Impact of the Assimilation of Surface Observations on Limited-Area Forecasts Over Complex Terrain

Autor(en)
Giorgio Doglioni, Stefano Serafin, Martin Weissmann, Gianluca Ferrari, Dino Zardi
Abstrakt

The article presents results from a computationally low-cost regional numerical weather prediction chain based on the Weather Research and Forecasting (WRF) model and its data assimilation (DA) suite WRFDA. Experiments with 24-h forecasts were performed twice daily (at 00 and 12 UTC) over a domain encompassing the European Alps and their surroundings with a 3.5 km grid spacing. The assimilation of surface observations with the 3D-Var algorithm improves near-surface temperature and humidity forecasts compared to control runs without assimilation. The forecast skill for near-surface variables is evaluated using independent surface observations. In the first six forecast hours, it is generally better in the assimilation experiments than in the control ones, with a mean error reduction of 0.26 K for temperature and 0.13 g kg−1 for specific humidity in the 00 UTC runs, and of 0.12 K for temperature and 0.18 g kg−1 for specific humidity in the 12 UTC runs. The assimilation reduces the standard deviation of the errors by a factor between 7% and 10% both for temperature and specific humidity. Verification with radiosonde measurements shows that assimilating surface observations increases the mean error in temperature and humidity forecasts within the planetary boundary layer (PBL), relative to the control. We show that the vertical structure of the adjustments to the model state resulting from DA (the analysis increments) is such that model biases are reduced near the surface but amplified higher up in the PBL. Finally, the assimilation of surface observations has a different impact on surface temperature forecasts in mountainous regions compared to adjacent plains. The error reduction is substantially higher in the plains than in the mountains, which likely depends on the inappropriate spreading of information along terrain-following model levels by the static covariances in 3D-Var. The relative accuracy of surface temperature forecasts in these two regions has a diurnal variability, with larger mean errors in the mountains during the day and in the plains at night.

Organisation(en)
Institut für Meteorologie und Geophysik
Externe Organisation(en)
Università degli Studi di Trento, Hypermeteo srl
Journal
Meteorological Applications
Band
32
ISSN
1350-4827
DOI
https://doi.org/10.1002/met.70107
Publikationsdatum
09-2025
Peer-reviewed
Ja
ÖFOS 2012
105206 Meteorologie
Schlagwörter
ASJC Scopus Sachgebiete
Atmospheric Science
Link zum Portal
https://ucrisportal.univie.ac.at/de/publications/7994ed84-e124-4970-8cf9-621bf1c55d6b